IEEE 2020: APPLICATION OF BLOCK
CHAINING TECHNOLOGY IN FINANCE AND ACCOUNTING FIELD
Abstract: Block chaining technology is a distributed infrastructure and computing
paradigm. The latest version is represented by the super account book. The latest
version is block chain 3. From the perspective of large data, this paper systematically
combs the essence and core technology of block chain technology, and expounds the
application status of block chain technology in accounting industry. This paper focuses on
building an irreversible distributed financial system based on large data in
the context of large data in order to apply
the scenario of "Block Chain Technology + Accounting Services" to the
accounting industry, and prospects the application of Block Chain Storage Technology and Intelligent Internet of Things
technology based on large data, providing inspiration for future research.
IEEE 2020: A Privacy-preserving
Multi-keyword Ranked Search over Encrypted Data in Hybrid Clouds
Abstract: With the rapid development of cloud computing services, more and
more individuals and enterprises prefer to outsource their data or computing to
clouds. In order to preserve data privacy, the data should be encrypted before
outsourcing and it is a challenge to perform searches over encrypted data. In
this paper, we propose a privacy-preserving multi-keyword ranked search scheme
over encrypted data in hybrid clouds, which is denoted as MRSE-HC. The keyword
dictionary of documents is clustered into balanced partitions by a bisecting
k-means clustering based keyword partition algorithm. According to the
partitions, the keyword partition based bit vectors are adopted for documents
and queries which are utilized as the index of searches. The private cloud
filters out the candidate documents by the keyword partition based bit vectors,
and then the public cloud uses the trapdoor to determine the result in the
candidates.
IEEE-2019: Analysis of Women Safety in Indian Cities Using Machine Learning on Tweets
Abstract: Women and girls
have been experiencing a lot of violence and harassment in public places in
various cities starting from stalking and leading to sexual harassment or
sexual assault. This research paper basically focuses on the role of social
media in promoting the safety of women in Indian cities with special reference
to the role of social media websites and applications including Twitter
platform Facebook and Instagram. This paper also focuses on how a sense of
responsibility on part of Indian society can be developed the common Indian
people so that we should focus on the safety of women surrounding them. Tweets
on Twitter which usually contains images and text and also written messages and
quotes which focus on the safety of women in Indian cities can be used to read
a message amongst the Indian Youth Culture and educate people to take strict
action and punish those who harass the women. Twitter and other Twitter handles
which include hash tag messages that are widely spread across the whole globe
sir as a platform for women to express their views about how they feel while we
go out for work or travel in a public transport and what is the state of their
mind when they are surrounded by unknown men and whether these women feel safe
or not?
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IEEE 2018: A Data Mining based Model for Detection of Fraudulent Behaviour in Water ConsumptionClick for more details
IEEE-2019: Sentiment Analysis of
Comment Texts Based on BiLSTM
With the rapid
development of Internet technology and social networks, a large number of
comment texts are generated on the Web. In the era of big data, mining the
emotional tendency of comments through artificial intelligence technology is
helpful for the timely understanding of network public opinion. The technology
of sentiment analysis is a part of artificial intelligence, and its research is
very meaningful for obtaining the sentiment trend of the comments. The essence
of sentiment analysis is the text classification task, and different words have
different contributions to classification. In the current sentiment analysis
studies, distributed word representation is mostly used. However, distributed
word representation only considers the semantic information of word, but ignore
the sentiment information of the word. In this paper, an improved word
representation method is proposed, which integrates the contribution of
sentiment information into the traditional TF-IDF algorithm and generates
weighted word vectors. The weighted word vectors are input into bidirectional
long short term memory (BiLSTM) to capture the context information effectively,
and the comment vectors are better represented. The sentiment tendency of the
comment is obtained by feed forward neural network classifier. Under the same
conditions, the proposed sentiment analysis method is compared with the
sentiment analysis methods of RNN, CNN, LSTM, and NB. The experimental results
show that the proposed sentiment analysis method has higher precision, recall,
and F1 score. The method is proved to be effective with high accuracy on
comments
Abstract: Fraudulent behavior
in drinking water consumption is a significant problem facing water supplying
companies and agencies. This behavior results in a massive loss of income and forms
the highest percentage of non-technical loss. Finding efficient measurements
for detecting fraudulent activities has been an active research area in recent
years. Intelligent data mining techniques can help water supplying companies to
detect these fraudulent activities to reduce such losses. This research
explores the use of two classification techniques (SVM and KNN) to detect suspicious
fraud water customers. The main motivation of this research is to assist
Yarmouk Water Company (YWC) in Irbid city of Jordan to overcome its profit
loss. The SVM based approach uses customer load profile attributes to expose
abnormal behavior that is known to be correlated with non-technical loss
activities. The data has been collected from the historical data of the company
billing system. The accuracy of the generated model hit a rate of over 74%
which is better than the current manual prediction procedures taken by the YWC.
To deploy the model, a decision tool has been built using the generated model.
The system will help the company to predict suspicious water customers to be inspected
on site.
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